Abstract

The most mature aspect of applying artificial intelligence (AI)/machine learning (ML) to problems in the atmospheric sciences is likely post-processing of model output. This article provides some history and current state of the science of post-processing with AI for weather and climate models. Deriving from the discussion at the 2019 Oxford workshop on Machine Learning for Weather and Climate, this paper also presents thoughts on medium-term goals to advance such use of AI, which include assuring that algorithms are trustworthy and interpretable, adherence to FAIR data practices to promote usability, and development of techniques that leverage our physical knowledge of the atmosphere. The coauthors propose several actionable items and have initiated one of those: a repository for datasets from various real weather and climate problems that can be addressed using AI. Five such datasets are presented and permanently archived, together with Jupyter notebooks to process them and assess the results in comparison with a baseline technique. The coauthors invite the readers to test their own algorithms in comparison with the baseline and to archive their results.This article is part of the theme issue ‘Machine learning for weather and climate modelling’.

Highlights

  • Artificial intelligence (AI) and machine learning (ML) show promise for improving modelling and forecasting for a host of problems

  • Post-processing weather and climate output using AI engenders an active and well-established community that has already provided a host of research demonstrating value for weather forecasting

  • It is the most mature sector of machine learning and artificial intelligence used in the weather and climate community

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Summary

Discussion

Cite this article: Haupt SE, Chapman W, Adams SV, Kirkwood C, Hosking JS, Robinson NH, Lerch S, Subramanian AC. 2021 Towards implementing artificial intelligence post-processing in weather and climate: proposed actions from the Oxford 2019 workshop. Cite this article: Haupt SE, Chapman W, Adams SV, Kirkwood C, Hosking JS, Robinson NH, Lerch S, Subramanian AC. Towards implementing artificial intelligence post-processing in weather and climate: proposed actions from the Oxford 2019 workshop. The coauthors propose several actionable items and have initiated one of those: a repository for datasets from various real weather and climate problems that can be addressed using AI. Five such datasets are presented and permanently archived, together with Jupyter notebooks to process them and assess the results in comparison with a baseline technique. This article is part of the theme issue ‘Machine learning for weather and climate modelling’

Background
Emergence of AI post-processing—A brief literature review
What is needed to move forward
What will constitute success?
Actionable items
Concluding thoughts
Full Text
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